A convolutional neural network for face mask detection in IoT-based smart healthcare systems

S. Bose, G. Logeswari, Thavavel Vaiyapuri, Tariq Ahamed Ahanger, Fadl Dahan, Fahima Hajjej, Ismail Keshta, Majed Alsafyani, Roobaea Alroobaea, Kaamran Raahemifar

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

The new coronavirus that produced the pandemic known as COVID-19 has been going across the world for a while. Nearly every area of development has been impacted by COVID-19. There is an urgent need for improvement in the healthcare system. However, this contagious illness can be controlled by appropriately donning a facial mask. If people keep a strong social distance and wear face masks, COVID-19 can be controlled. A method for detecting these violations is proposed in this paper. These infractions include failing to wear a facemask and failing to maintain social distancing. To train a deep learning architecture, a dataset compiled from several sources is used. To compute the distance between two people in a particular area and also predicts the people wearing and not wearing the mask, The proposed system makes use of YOLOv3 architecture and computer vision. The goal of this research is to provide valuable tool for reducing the transmission of this contagious disease in various environments, including streets and supermarkets. The proposed system is evaluated using the COCO dataset. It is evident from the experimental analysis that the proposed system performs well in predicting the people wearing the mask because it has acquired an accuracy of 99.2% and an F1-score of 0.99.

Original languageEnglish
Article number1143249
JournalFrontiers in Physiology
Volume14
DOIs
StatePublished - 2023

Keywords

  • convolutio nal neural networks (CNN)
  • COVID-19
  • face mask and social distancing detection
  • image processing
  • neural network

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